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Research - Papers

Explore a selection of our published work on a variety of key research challenges in AI.

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Holodeck: Language Guided Generation of 3D Embodied AI Environments

Yue YangFan-Yun SunLuca WeihsChristopher Clark
2025
Computer Vision and Pattern Recognition

3D simulated environments play a critical role in Embodied AI, but their creation requires expertise and extensive manual effort, restricting their diversity and scope. To miti-gate this limitation,… 

Re-evaluating Automatic LLM System Ranking for Alignment with Human Preference

Mingqi GaoYixin LiuXinyu HuArman Cohan
2025
NAACL

Evaluating and ranking the capabilities of different LLMs is crucial for understanding their performance and alignment with human preferences. Due to the high cost and time-consuming nature of human… 

Social-RAG: Retrieving from Group Interactions to Socially Ground Proactive AI Generation to Group Preferences

Ruotong WangXinyi ZhouLin QiuAmy X. Zhang
2025
CHI

AI agents are increasingly tasked with making proactive suggestions in online spaces where groups collaborate, but can be unhelpful or even annoying, due to not fitting the group's preferences or… 

Answer, Assemble, Ace: Understanding How LMs Answer Multiple Choice Questions

Sarah WiegreffeOyvind TafjordYonatan BelinkovAshish Sabharwal
2025
ICLR

Multiple-choice question answering (MCQA) is a key competence of performant transformer language models that is tested by mainstream benchmarks. However, recent evidence shows that models can have… 

DiscoveryBench: Towards Data-Driven Discovery with Large Language Models

Bodhisattwa Prasad MajumderHarshit SuranaDhruv AgarwalPeter Clark
2025
ICLR

Can the rapid advances in code generation, function calling, and data analysis using large language models (LLMs) help automate the search and verification of hypotheses purely from a set of… 

Generalization v.s. Memorization: Tracing Language Models' Capabilities Back to Pretraining Data

Antonis AntoniadesXinyi WangYanai ElazarW. Wang
2025
ICLR

The impressive capabilities of large language models (LLMs) have sparked debate over whether these models genuinely generalize to unseen tasks or predominantly rely on memorizing vast amounts of… 

LLM-SR: Scientific Equation Discovery via Programming with Large Language Models

Parshin ShojaeeKazem MeidaniShashank GuptaChandan K Reddy
2025
ICLR

Mathematical equations have been unreasonably effective in describing complex natural phenomena across various scientific disciplines. However, discovering such insightful equations from data… 

On Linear Representations and Pretraining Data Frequency in Language Models

Jack MerulloNoah A. SmithSarah WiegreffeYanai Elazar
2025
ICLR

Pretraining data has a direct impact on the behaviors and quality of language models (LMs), but we only understand the most basic principles of this relationship. While most work focuses on… 

A Little Depth Goes a Long Way: The Expressive Power of Log-Depth Transformers

William MerrillAshish Sabharwal
2025
arXiv

Recent theoretical results show transformers cannot express sequential reasoning problems over long input lengths, intuitively because their computational depth is bounded. However, prior work… 

ZebraLogic: On the Scaling Limits of LLMs for Logical Reasoning

Bill Yuchen LinRonan Le BrasKyle RichardsonYejin Choi
2025
arXiv

We investigate the logical reasoning capabilities of large language models (LLMs) and their scalability in complex non-monotonic reasoning. To this end, we introduce ZebraLogic, a comprehensive… 

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